Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5944719 | Atherosclerosis | 2015 | 7 Pages |
Abstract
Objective: Three-dimensional (3-D) visualization and quantification of vascular calcification (VC) are important to accelerate the multidisciplinary investigation of VC. Agatston scoring is the standard approach for evaluating coronary artery calcification. However, regarding aortic calcification (AC), quantification methods appear to vary among studies. The aim of this study was to introduce a simple technique of simultaneous quantification and 3-D visualization of AC and provide validation data. Methods: The main study comprised of 126 patients who underwent the thoracoabdominal plain computed tomography scan as preoperative general evaluation. AC was quantified using a volume-rendering (VR) method (VR AC volume) by extracting the volume with a density â¥130 HU within the total aorta. The concordance and reproducibility of the VR AC volume were validated in comparison with the conventional slice-by-slice voxel-based AC quantification (volumetric AC score) using the Agatston scoring software. Results: Excellent concordance between the VR AC volume and volumetric AC score was confirmed (Spearman correlation coefficient = 0.9997, mean difference = â0.05 ± 0.23 mL, p <0.0001). Excellent intraobserver and interobserver reliabilities were demonstrated using the Bland-Altman analysis as the mean intraobserver difference was 0.00 mL (p = 0.9863) and the mean interobserver difference was â0.01 mL (p = 0.6612). Conclusion: The VR method was validated to be feasible. This simple approach could overcome the limitation of the current method based on slice-by-slice pixel or voxel summation, which lacks 3-D visual information. Accordingly, this approach would be promising for accelerating the investigation of VC.
Keywords
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Authors
Shumpei Mori, Tomofumi Takaya, Mitsuo Kinugasa, Tatsuro Ito, Sachiko Takamine, Sei Fujiwara, Tatsuya Nishii, Atsushi K. Kono, Takeshi Inoue, Seimi Satomi-Kobayashi, Yoshiyuki Rikitake, Yutaka Okita, Ken-ichi Hirata,